Principal component analysis for Riemannian manifolds, with an application to triangular shape spaces

2006 | journal article

Jump to: Cite & Linked | Documents & Media | Details | Version history

Cite this publication

​Principal component analysis for Riemannian manifolds, with an application to triangular shape spaces​
Huckemann, S.   & Ziezold, H.​ (2006) 
Advances in Applied Probability38(2) pp. 299​-319​.​ DOI: https://doi.org/10.1239/aap/1151337073 

Documents & Media

License

GRO License GRO License

Details

Authors
Huckemann, Stephan ; Ziezold, Herbert
Abstract
Classical principal component analysis on manifolds, for example on Kendall's shape spaces, is carried out in the tangent space of a Euclidean mean equipped with a Euclidean metric. We propose a method of principal component analysis for Riemannian manifolds based on geodesics of the intrinsic metric, and provide a numerical implementation in the case of spheres. This method allows us, for example, to compare principal component geodesics of different data samples. In order to determine principal component geodesics, we show that in general, owing to curvature, the principal component geodesics do not pass through the intrinsic mean. As a consequence, means other than the intrinsic mean are considered, allowing for several choices of definition of geodesic variance. In conclusion we apply our method to the space of planar triangular shapes and compare our findings with those of standard Euclidean principal component analysis.
Issue Date
2006
Journal
Advances in Applied Probability 
ISSN
0001-8678
Language
English

Reference

Citations


Social Media